Core ML is an exciting new framework that makes running various machine learning and statistical models on macOS and iOS feel natively supported. The framework helps developers integrate already prepared statistical and machine learning models into their apps. You will now be able to create applications that have machine learning functionality built in.

Developers want to learn how to use the features inside Core ML to make their applications smarter when explored by users. These videos will show you just how to integrate machine learning into real-world applications. You will design the UI and create a Tap Gesture Recognizer using AVFoundations. You will be importing Python ML Libraries such as TensorFlow, Keras, Scikit-learn into the Spyder IDE, connecting Caffe dependencies, and configuring Caffe.

You will convert a Scikit-learn model—the Iris dataset—to a CoreML model in X-code to use it in your apps. You can also search for existing models and convert them into a CoreML model so that you can explore them inside X-code and add the functionality into your apps. You will have the power to build apps that display the intellectual ability to learn from the information provided by these models. Wow! This is powerful.

By the end of this course, you will be fluent in the Core ML framework upon completion. The videos will provide the tools needed to get up and running as quickly as possible.

Style and Approach

This course is a perfect mix of concepts and practice that will help you to develop a real-world, augmented-reality, iOS 11 application from scratch. With a firm grounding in the fundamentals of the Swift language, and knowledge of how to use the key frameworks, you will be able to build an interesting application.

Features

Master the tools needed to get up and running with machine learning functionality in iOS 11 using the new Core ML framework.

Authors

Paul DeFilippi

Paul DeFilippi is an independent iOS App Developer.He has made many popular apps on iOS, such as the social media app Chuckleblok, the Phlare3 weather app, and the Pokelator calculator, in the App Store, or you can check out what he is currently working on on GitHub (github.com/PaulDeFilippi).

When you visit any website, it may store or retrieve information on your browser,usually in the form of cookies. This information does not usually identify you, but it does help companies to learn how their users are interacting with the site.

We respect your right to privacy, so you can choose not to accept some of these cookies. Choose from the different category headers to find out more and change your default settings.

Please note if you have arrived at our site via a cashback website, turning off targeting or performance cookies will mean we cannot verify your transaction with the referrer and you may not receive your cashback.

Strictly Necessary Cookies
Always active

These cookies are essential for the website to function and they cannot be turned off. They are usually only set in response to actions made by you on our site, such as logging in, adding items to your cart or filling in forms. If you browse our website, you accept these cookies.

Cookies are used by

Packt Publishing

Google Analytics

Heap

Performance Cookies

These cookies allow us to keep track of how many people have visited our website, how they discovered us, and how they interact with the site.All the information used is aggregated, and completely anonymous. If you do not allow these cookies we won’t know you have visited us.

Cookies are used by

Facebook Pixel

Google Adwords

Targeting Cookies

These cookies are placed on our site by our trusted third-party providers.They help us to personalise our adverts and provide services to our customers such as live chat.

If you have arrived at our site via a cashback website, turning off Targeting Cookies will mean we cannot verify your transaction with the referrer and you may not receive your cashback.